Facial emotion recognition through artificial intelligence

Date

2024-01-31

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Coadvisor

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Volume Title

Publisher

Frontiers Media
Language
English

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Abstract

This paper introduces a study employing artificial intelligence (AI) to utilize computer vision algorithms for detecting human emotions in video content during user interactions with diverse visual stimuli. The research aims to unveil the creation of software capable of emotion detection by leveraging AI algorithms and image processing pipelines to identify users' facial expressions. The process involves assessing users through images and facilitating the implementation of computer vision algorithms aligned with psychological theories defining emotions and their recognizable features. The study demonstrates the feasibility of emotion recognition through convolutional neural networks (CNN) and software development and training based on facial expressions. The results highlight successful emotion identification; however, precision improvement necessitates further training for contexts with more diverse images and additional algorithms to distinguish closely related emotional patterns. The discussion and conclusions emphasize the potential of A.I. and computer vision algorithms in emotion detection, providing insights into software development, ongoing training, and the evolving landscape of emotion recognition technology. Further training is necessary for contexts with more diverse images, alongside additional algorithms that can effectively distinguish between facial expressions depicting closely related emotional patterns, enhancing certainty and accuracy.

Keywords

Facial emotion, Recognition, AI, Convolutional neural network, Images

Document Type

Journal article

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Citation

Ballesteros, J. A., Ramírez V., G. M., Moreira, F., Solano, A., & Pelaez, C. A. (2024). Facial emotion recognition through artificial intelligence. Frontiers in Computer Science, 6(Published online: 31 january 2024), 1-14. https://doi.org/10.3389/fcomp.2024.1359471. Repositório Institucional UPT. https://hdl.handle.net/11328/5367

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Open Access

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